Setting Up Auto-GPT (Local Host)
Introduction
This guide will help you setup the server and builder for the project.
Prerequisites
To setup the server, you need to have the following installed:
Checking if you have Node.js & NPM installed
We use Node.js to run our frontend application.
If you need assistance installing Node.js: https://nodejs.org/en/download/
NPM is included with Node.js, but if you need assistance installing NPM: https://docs.npmjs.com/downloading-and-installing-node-js-and-npm
You can check if you have Node.js & NPM installed by running the following command:
node -v
npm -vOnce you have Node.js installed, you can proceed to the next step.
Checking if you have Docker & Docker Compose installed
Docker containerizes applications, while Docker Compose orchestrates multi-container Docker applications.
If you need assistance installing docker: https://docs.docker.com/desktop/
Docker-compose is included in Docker Desktop, but if you need assistance installing docker compose: https://docs.docker.com/compose/install/
You can check if you have Docker installed by running the following command:
docker -v
docker compose -vOnce you have Docker and Docker Compose installed, you can proceed to the next step.
Quick Setup with Auto Setup Script (Recommended)
If you're self-hosting AutoGPT locally, we recommend using our official setup script to simplify the process. This will install dependencies (like Docker), pull the latest code, and launch the app with minimal effort.
For macOS/Linux:
curl -fsSL https://setup.agpt.co/install.sh -o install.sh && bash install.shFor Windows (PowerShell):
powershell -c "iwr https://setup.agpt.co/install.bat -o install.bat; ./install.bat"This method is ideal if you're setting up for development or testing and want to skip manual configuration.
Manual Setup
Cloning the Repository
The first step is cloning the AutoGPT repository to your computer. To do this, open a terminal window in a folder on your computer and run:
git clone https://github.com/Significant-Gravitas/AutoGPT.gitIf you get stuck, follow this guide.
Once that's complete you can continue the setup process.
Running the AutoGPT Platform
To run the platform, follow these steps:
Navigate to the
autogpt_platformdirectory inside the AutoGPT folder:cd AutoGPT/autogpt_platformCopy the
.env.defaultfile to.envinautogpt_platform:
cp .env.default .envThis command will copy the .env.default file to .env in the autogpt_platform directory. You can modify the .env file to add your own environment variables.
Run the platform services:
docker compose up -d --buildThis command will start all the necessary backend services defined in the
docker-compose.ymlfile in detached mode.
Checking if the application is running
You can check if the server is running by visiting http://localhost:3000 in your browser.
Notes:
By default the application for different services run on the following ports:
Frontend UI Server: 3000 Backend Websocket Server: 8001 Execution API Rest Server: 8006
Additional Notes
You may want to change your encryption key in the .env file in the autogpt_platform/backend directory.
To generate a new encryption key, run the following command in python:
from cryptography.fernet import Fernet;Fernet.generate_key().decode()Or run the following command in the autogpt_platform/backend directory:
poetry run cli gen-encrypt-keyThen, replace the existing key in the autogpt_platform/backend/.env file with the new one.
📌 Windows Installation Note
When installing Docker on Windows, it is highly recommended to select WSL 2 instead of Hyper-V. Using Hyper-V can cause compatibility issues with Supabase, leading to the supabase-db container being marked as unhealthy.
Steps to enable WSL 2 for Docker:
Install WSL 2.
Ensure that your Docker settings use WSL 2 as the default backend:
Open Docker Desktop.
Navigate to Settings > General.
Check Use the WSL 2 based engine.
Restart Docker Desktop.
Already Installed Docker with Hyper-V?
If you initially installed Docker with Hyper-V, you don’t need to reinstall it. You can switch to WSL 2 by following these steps: 1. Open Docker Desktop. 2. Go to Settings > General. 3. Enable Use the WSL 2 based engine. 4. Restart Docker.
🚨 Warning: Enabling WSL 2 may erase your existing containers and build history. If you have important containers, consider backing them up before switching.
For more details, refer to Docker's official documentation.
Development
Frontend Development
Running the frontend locally
To run the frontend locally, you need to have Node.js and PNPM installed on your machine.
Install Node.js to manage dependencies and run the frontend application.
Install PNPM to manage the frontend dependencies.
Run the service dependencies (backend, database, message queues, etc.):
docker compose --profile local up deps_backend --build --detachGo to the autogpt_platform/frontend directory:
cd frontendInstall the dependencies:
pnpm installGenerate the API client:
pnpm generate:api-clientRun the frontend application:
pnpm devFormatting & Linting
Auto formatter and linter are set up in the project. To run them: Format the code:
pnpm formatLint the code:
pnpm lintTesting
To run the tests, you can use the following command:
pnpm testBackend Development
Running the backend locally
To run the backend locally, you need to have Python 3.10 or higher installed on your machine.
Install Poetry to manage dependencies and virtual environments.
Run the backend dependencies (database, message queues, etc.):
docker compose --profile local up deps --build --detachGo to the autogpt_platform/backend directory:
cd backendInstall the dependencies:
poetry install --with devRun the backend server:
poetry run appFormatting & Linting
Auto formatter and linter are set up in the project. To run them:
Format the code:
poetry run formatLint the code:
poetry run lintTesting
To run the tests:
poetry run pytest -s Adding a New Agent Block
To add a new agent block, you need to create a new class that inherits from Block and provides the following information: * All the block code should live in the blocks (backend.blocks) module. * input_schema: the schema of the input data, represented by a Pydantic object. * output_schema: the schema of the output data, represented by a Pydantic object. * run method: the main logic of the block. * test_input & test_output: the sample input and output data for the block, which will be used to auto-test the block. * You can mock the functions declared in the block using the test_mock field for your unit tests. * Once you finish creating the block, you can test it by running poetry run pytest backend/blocks/test/test_block.py -s. * Create a Pull Request to the dev branch of the repository with your changes so you can share it with the community :)
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